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Counterfactual Policy Evaluation for Decision-Making in Autonomous Driving

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arxiv 2003.11919 v3 pith:BSDB3ASJ submitted 2020-03-20 cs.LG cs.AIcs.ROstat.ML

Counterfactual Policy Evaluation for Decision-Making in Autonomous Driving

classification cs.LG cs.AIcs.ROstat.ML
keywords policycounterfactualwellevaluationsituationsworldsautonomousbehaviors
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Learning-based approaches, such as reinforcement and imitation learning are gaining popularity in decision-making for autonomous driving. However, learned policies often fail to generalize and cannot handle novel situations well. Asking and answering questions in the form of "Would a policy perform well if the other agents had behaved differently?" can shed light on whether a policy has seen similar situations during training and generalizes well. In this work, a counterfactual policy evaluation is introduced that makes use of counterfactual worlds - worlds in which the behaviors of others are non-actual. If a policy can handle all counterfactual worlds well, it either has seen similar situations during training or it generalizes well and is deemed to be fit enough to be executed in the actual world. Additionally, by performing the counterfactual policy evaluation, causal relations and the influence of changing vehicle's behaviors on the surrounding vehicles becomes evident. To validate the proposed method, we learn a policy using reinforcement learning for a lane merging scenario. In the application-phase, the policy is only executed after the counterfactual policy evaluation has been performed and if the policy is found to be safe enough. We show that the proposed approach significantly decreases the collision-rate whilst maintaining a high success-rate.

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  1. C-CoT: Counterfactual Chain-of-Thought with Vision-Language Models for Safe Autonomous Driving

    cs.CV 2026-05 unverdicted novelty 5.0

    C-CoT applies VLMs to autonomous driving via five-stage reasoning with a meta-action tree for counterfactuals, yielding 81.9% risk recall, 3.52% collision rate, and 1.98 m L2 error on a new dataset.